Datasets:
license: cc-by-nc-4.0
language:
- zh
pretty_name: EduData
size_categories:
- 10K<n<100K
task_categories:
- question-answering
- text-generation
task_ids:
- multiple-choice-qa
tags:
- education
- chinese
- exam
- reasoning
- llm
Dataset Card for EduData
Dataset Summary
EduData is a large-scale Chinese educational question-answering dataset released with our AAAI 2026 paper, "From Diagnosis to Generalization: A Cognitive Approach to Data Selection for Educational LLMs".
The dataset is designed to support the training and evaluation of educational large language models, with a particular focus on data selection, cross-subject transfer, and generalization in exam-style reasoning settings.
According to the accompanying paper, EduData contains 98,000 high-school-level single-choice questions spanning seven subjects:
- Mathematics
- Physics
- Chemistry
- Biology
- History
- Geography
- Politics
The paper-organized version contains 14,000 questions per subject.
Supported Tasks
EduData is primarily intended for:
- Supervised fine-tuning of educational LLMs
- Multiple-choice question answering in Chinese
- Research on data selection for LLM training
- Cross-subject generalization and transfer learning
- Reproduction of the
CASSframework experiments
Language
The dataset is in Chinese. Question text is sourced from Chinese mock examinations and college-entrance-exam-style educational materials.
Dataset Structure
Current Release Format
The current release provides a merged JSON file:
EduData.json: 98,000 examples
Each example is stored in instruction-tuning format with the following fields:
instruction: the full prompt, including the question stem and answer optionsinput: an auxiliary input field; in the current release this is an empty string for all examplesoutput: the target answer in natural language form, typically答案为 A/B/C/Did: a unique sample identifier
Data Instance
{
"instruction": "以下题目为单选题,只有一个正确选项,请根据问题文本和选项给出正确答案 题目文本为: 已知等差数列{$a_{n}},$满足$a_{2}+a_{11}=36,a_{8}=24,$则$a_{5}$等于$\\SIFChoice$ 选项为: (A) $6$ (B) $8$ (C) $10$ (D) $12$",
"input": "",
"output": "答案为 B",
"id": "example-id"
}
Data Fields
instructionThe main textual prompt. In most cases it includes a fixed instruction prefix, the question body, and four answer options.inputReserved for optional auxiliary content. It is empty in the releasedEduData.json.outputThe gold answer label. In the current release, the answer is written as short Chinese text rather than as a bare class label.idA unique identifier for the example.
Data Characteristics
From inspection of the released EduData.json:
- Total examples: 98,000
- Unique IDs: 98,000
- All
inputfields are empty strings - Answers cover the four options
A/B/C/D - The data is formatted as instruction-following examples rather than as a separately structured
question / choices / labelschema
Out-of-Scope Use
This dataset is not intended for:
- Commercial use
- High-stakes educational decision-making without human oversight
Curation Rationale
EduData was created to support research on educational LLMs in realistic multi-subject settings. Existing educational datasets are often narrow in subject coverage or insufficient for studying whether a model can generalize beyond a single domain. Our goal was to build a challenging, high-quality benchmark that better reflects practical educational use cases and enables research on cognitively informed data selection.
Source Data
The dataset was curated from Chinese mock examinations and college-entrance-exam-style materials. The released data focuses on single-choice questions and was organized for educational QA and instruction-tuning use.
Processing
The current public release is distributed as instruction-tuning JSON records. During preprocessing, the project also maintained split files that were merged into the final EduData.json.
Biases, Risks, and Limitations
- The dataset is Chinese-only and reflects one educational and cultural context
- It is centered on exam-style single-choice questions rather than open-ended pedagogy
- The merged release does not include explicit subject metadata per row
- Some formatting noise from source documents remains in a small number of examples
- Performance on this dataset should not be treated as a comprehensive measure of educational competence
Licensing
This dataset is released under CC BY-NC 4.0.
Commercial use is prohibited. Users are responsible for ensuring that their use complies with the dataset license and any applicable source-material restrictions.
Citation
If you use EduData or the CASS framework in your research, please cite:
@inproceedings{guo2026cass,
title = {From Diagnosis to Generalization: A Cognitive Approach to Data Selection for Educational LLMs},
author = {Yuxiang Guo and Yan Zhuang and Qi Liu and Zhenya Huang and Xianquan Wang and Liyang He and Jiatong Li and Rui Li and Shijin Wang},
booktitle = {Proceedings of the AAAI Conference on Artificial Intelligence},
year = {2026}
}